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篇名 大中華貨幣單一化與經濟指標之探討-以模糊類神經和ARIMAX-GARCH模型之應用
卷期 11:2
並列篇名 The Study of Chinese Currency Unification and Economic Factors: The Analysis of Fuzzy Neural Network and ARIMAX-GARCH Model
作者 陳若暉鄭誌逸高啟勛
頁次 029-054
關鍵字 大中華單一貨幣ARIMAX-GARCH灰關聯分析模糊理論類神經網路Chinese Currency UnitGrey Relationship AnalysisFuzzyNeural Network
出刊日期 201310

中文摘要

本研究參考歐元通貨籃之建構,以台灣、香港和中國大陸之每人生產毛額、出口總值和淨外匯存底加權,分別利用特別提款權(Special Drawing Right, SDR) 、歐元、修正SDR方式,建構1992年第一季至2007年第二季之大中華單一中心匯率(CCU)。以灰色關聯分析、模糊類神經、及ARIMAX-GARCH模型,分析影響CCU之關鍵因素和預測走勢,並比較模式之績效。經灰色關聯分析結果發現,CCU分別受工業生產指數、國內生產毛額、股價指數、外匯存底等變數影響最深,而灰色關聯分析篩選之前五變數預測績效皆優於後五變數,且修正後匯率模式績效較SDR和EURO計算方式佳。ARIMAX-GARCH分析結果以工業生產指數、貨幣供給成長率和貿易變數影響最大且深遠。整體而言,ARIMAX-GARCH預測績效優於模糊類神經。

英文摘要

Referring to the structure of the EURO currency basket, the central rate of Chinese Currency (CCU) Unit was simulated from 1992/Q1to the 2007/Q2 by the weights based on the GDP per capital, the exports, and the net foreign reserve of the Taiwan, Hong Kong, and Mainland China. By comparing each of the Special Drawing Rights (SDR), EURO, and modified-SDR methods, it is adequate to apply Grey Relation, Fuzzy Neural Network, and ARIMAX-GARCH model to find out the key factors affecting CCU and performing a prediction analysis. According the grey relational analysis, we found that the better five variables performed well comparing with the worse five. The modified-SDR method is better than SDR and EURO methods to measure CCU. By analyzing the ARIMAX- GARCH model, the industry productive index, money supply growth rate, and trade factors significantly affect the CCU and its dynamic effect. Generally, the forecasting performance of ARIMAX- GARCH model is better than the neutral network.

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